Home /Research /Retina-inspired spike processing for neuromorphic color recognition
PERCEPTION

Retina-inspired spike processing for neuromorphic color recognition

Jiaying Gong, Chenxing Jin, Wanrong Liu, Xiaofang Shi, Jia Sun, Junliang Yang

Year
2025
Citations
1

Abstract

Conventional machine vision systems are hindered by constrained adaptability, particularly in dynamic and unpredictable environments. Herein, we present a neuromorphic color recognition system inspired by the intricacies of retinal signal processing, constructed through a hierarchical bio-mimetic framework. The system integrates a broadband photosensor to emulate the spectral selectivity of cone cells and employs an ion-gel-gated oxide transistor to replicate synaptic dynamics, both of which are integral to achieving highly efficient color recognition. In addition, a dual-threshold algorithm is incorporated, enabling precise control of robotic motions. The system's event-driven architecture with a hierarchical coding strategy enhances dynamic perception, collectively rendering it highly adaptive and highly efficient for environmental interactions.

Keywords

Neuromorphic engineeringSpike (software development)RetinaComputer scienceArtificial intelligencePattern recognition (psychology)NeuroscienceComputer visionArtificial neural networkPsychology

Related papers

Browse all PERCEPTION papers